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Can an algorithm predict a patient's risk of committing suicide?

ISTANBUL, TURKEY - MAY 06:  A tablet is seen in the center of a high tech art installation at Salt Galata on May 6, 2017 in Istanbul, Turkey. The "Archive Dreaming" installation by artist Refik Anadol uses artificial intelligence to visualize nearly 2 million historical Ottoman documents and photographs from the SALT Research Archive. Controlled by a single tablet in the center of a mirrored room the artist used machine learning algorithms to combine historical documents, art, graphics and photographs to create an immersive installation allowing people to scroll, read and explore the archives. The SALT Galata archives include around 1.7 million documents ranging from the late-Ottoman era to the present day. The exhibition is on show at SALT Galata art space through till June 11, 2017.  (Photo by Chris McGrath/Getty Images)
Chris McGrath/Getty Images
A tablet is seen in the center of a high tech art installation at Salt Galata on May 6, 2017 in Istanbul, Turkey.

Can artificial intelligence save lives? That’s the question researchers at Vanderbilt Medical Center and Florida State University have been trying to answer.

Can artificial intelligence save lives? That’s the question researchers at Vanderbilt Medical Center and Florida State University have been trying to answer.

Last year, a team of researchers created an algorithm that could potentially identify suicide-prone individuals. The machine-learning algorithm uses information like age, gender, diagnostic history, zip code, and prescriptions to assess if someone is at risk of suicide.

The data scientists gathered over 5,000 electronic medical records of adult patients who had previously self-harmed or attempted suicide. The algorithm correctly predicted 84% of patients who would attempt suicide in the next week, and was 80% accurate in predicting a suicide attempt within the next two years.

The researchers are now working alongside mental health specialists, ethicists, and computer scientists to figure out how the algorithm will operate in a clinical care setting. If someone is at risk of suicide, how should clinicians intervene? What’s the most effective approach in telling someone they’re likely to commit suicide? And with such high stakes, what effects can an inaccurate prediction have on a patient? We discuss.

If you are in need of support, please call the National Suicide Prevention Lifeline, 1-800-273-8255, for free and confidential help 24 hours a day, seven days a week.

Guests:

Colin G. Walsh, M.D., assistant professor and lead data scientist of the suicide risk prediction effort at Vanderbilt University Medical Center

Matthew K. Nock, professor of psychology at Harvard University whose research focuses on suicide and self-harm; he tweets

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